Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
INDEPENDENT FOREST INVENTORY
OF ACACIA MANGIUM –
ANNUAL REPORT MAY 2012
Produced in conjunction with the Universidade de Trás-os-Montes e Alto Douro
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
TABLE OF CONTENTS 1
1. Introduction .................................................................................................................... 3 1.1. Species characterization .................................................................................................................................................. 5 1.2. Main Goals ............................................................................................................................................................................ 6
2. Field Material .................................................................................................................. 7 3. Area characterization ................................................................................................. 8
3.1 Vale do buriti farm .............................................................................................................................................................. 8 3.2 Santa Maria Farm ................................................................................................................................................................ 8
4. Climate characterization ........................................................................................... 9 4.1 Temperature ......................................................................................................................................................................... 9 4.2 Precipitation ........................................................................................................................................................................ 10 4.3 Insolation .............................................................................................................................................................................. 11
5. Edaphic and ecological characterization .......................................................... 12 6. Methodology ............................................................................................................... 13
6.1. Random sampling ............................................................................................................................................................. 13 7. Fieldwork procedures ................................................................................................ 15 8. Measurement and observation errors .................................................................. 17
8.1. Human Errors ....................................................................................................................................................................... 17 8.2. Measurement errors .......................................................................................................................................................... 17
9. Diameters measurement rules ................................................................................ 18 9.1. Dominant trees .................................................................................................................................................................. 19 9.2. Model Tree .......................................................................................................................................................................... 19 9.3. Wood volume calculation .............................................................................................................................................. 20
10. Statistical analysis ........................................................................................................ 21 10.1. Average ............................................................................................................................................................................... 21 10.2. Variance .............................................................................................................................................................................. 22 10.3. Standard Deviation .......................................................................................................................................................... 22 10.4. Variance of average ....................................................................................................................................................... 23 10.5. Standard Error ..................................................................................................................................................................... 23 10.6. Sampling Error ..................................................................................................................................................................... 24 10.7. Interval of Confidence .................................................................................................................................................... 24
11. Results ............................................................................................................................. 25 11.1. Hypsometric Curves (h - height in meters; d - diameter in cm) ........................................................................... 25
11.1.1. Santa Maria’s Farm .................................................................................................................................................. 25 11.1.2. Vale do Buriti’s Farm ................................................................................................................................................ 26
11.2. Cubing Equations: ............................................................................................................................................................. 27 11.2.1. Santa Maria’s Farm .................................................................................................................................................. 27 11.2.2. Vale do Buriti’s farm ................................................................................................................................................. 28
11.3. Santa Maria’s Farm ........................................................................................................................................................... 29 12. Conclusions .................................................................................................................. 35
12.1. Santa Maria’s Farm ........................................................................................................................................................... 35 12.2. Vale do Buriti’s Farm ......................................................................................................................................................... 36
13. Bibliographic References ......................................................................................... 37
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
1. INTRODUCTION
Greenwood Group introduction
The 2012 Greenwood Group (Brazil) Annual Report dated, May 11th 2013, has been compiled in
conjunction with the Post Graduate Masters’ students of Universidade de Trás-os-Montes e Alto Douro
(UTAD), http://www.utad.pt/vPT/Paginas/HomepageUtad.aspx, overseen by Assistant Professor
Domingos Lopes. The studies took place during November/ December 2012. The primary objectives of
the 2012 UTAD study was to provide a detailed independent forestry inventory on two mixed species
plantations belonging to the Greenwood Group.
Such studies would characterize the geographic area, climatic conditions, soil conditions, work
procedures, volumes of wood production per hectare; based on random area sampling (to evaluate the
entire plantations is logistically unfeasible). In total 63 plots were evaluated and wood productions rates
were calculated via a “SYSTAT” program, details of which are contained within the document.
The report was originally composed in Portuguese and has been subsequently translated and signed off
by UTAD - no textual changes have been made in order to retain the integrity of the document. In this
report, UTAD have focused their studies in particular in the Acacia Mangium tree species, with the
intention for the following report (2) by UTAD, to focus on Eucalyptus and several other tree species
currently under management by the Greenwood Group in Bahia state Brazil. These studies will
commence several months in advance of those conducted in 2012 (July onwards) and therefore it is
expected that this report will be made available by early 2014.
UTAD post graduate students will come under the guidance of the following personnel:
- Prof. José Aranha (Forest Engineering and Landscape Architecture Department Director)
- Prof Simone Varandas (Director of Forest Engineering Course)
- Marai João Gaspar (Vice-Director of Forest Engineering Course)
- Ricardo Gonçalves (Senior Project Manager, Greenwood Portugal)
- Nuno Paris (Operations Director, Greenwood Agropecuaria ltda)
The post graduate study was the first conducted as part of the strategic partnership between the
Greenwood Group and UTAD, and we believe forms the foundation of a long term relationship between
the 2 partners. The first study offered the opportunity for students to obtain invaluable hands-on
experience of live, operating forestry projects outside of the academic background. Our intention is to
build on these foundations with UTAD. As our forestry projects develop and expand we are confident
that additional strategic partnerships will be formed to be able to offer more independent technical
audits across all our plantations globally, with in-depth analysis of each tree species progression. It is vital
that the data compiled is done independently for objective opinion to be formed, hence our eagerness
to continue to develop further partnerships.
In respect to the Acacia Mangium project, it is notable that, according to the independent study
conducted by UTAD, growth rates at our most mature Acacia Mangium projects ( three years plus) are
exceeding Greenwood´s original forecasts of 31.4 cubic meters per hectare by 8.59%. Average volume
production is currently achieving 34.1 cubic meters per hectare. The agroforestry management team
remains confident that such rates will continue to improve.
We would like to take this opportunity to thank all contributors from UTAD for the compilation of this report
and look forward to further development of the partnership. Statement Ends.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
UTAD introduction
The forest inventory is one of the best tools of the forest
engineer, since it allows us to know exactly what a population
area is and, therefore, decide on the best strategy to maximize
yield.
In this forest inventory, in an area belonging to Greenwood
Group, 63 plots were inventoried: 23 in Vale do Buriti’s farm and
40 in Santa Maria’s farm. The main goal was to assess the
growth volume on these farms.
Therefore, some plots were selected on the field randomly based on the existence of a future
tree in the center of each plot. The land and the forest management are one of the main
interests of this forest inventory. Like any other economic activity, it is essential the prior
knowledge of the preexisting resources and the estimated evaluation to be produced until the
age of the final cut.
The technical information is, in essence, based on the sampling techniques. The methods used
to survey the forest populations, seek to get the lowest possible error for the same amount of
work. Due to the fact that to make a full assessment of all the trees that belongs to the
population it is too expensive in terms of resources, there was a previous evaluation of the
number of sample plots needed for study. Thus, we would be able to determine the volume per
plot, and therefore we would be able to extrapolate the total area. On the other hand, it is
necessary to take into account the specific type of forest so that the methods and sampling
procedures are adjusted to, thereby, enable reducing the cost of this inventory. This cost is
directly affected by the measurement time and the path.
After a work planning, this final report has been prepared in which is the final results and
procedures are succinctly explained.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
1.1. SPECIES CHARACTERIZATION
The Acacia mangium is a large tree that can reach 25 to 30 m tall, with its straight trunk that
can exceed half of the total tree height. The standing trunk has grayish-brown, with slightly
protruding shell and slightly grooved along. As for its branching, it presents thin, horizontal,
spaced, oval form with dense foliage canopies.
The leaves are alternate and simple in green and winged branches, arranged in spiral, oval-
lanceolate or oval-elongated, broad, leathery, with short petiole, apex elongated, ribs
protruding from the base, 12-18 cm long. The A. mangium leaves are permanent “filódios”
which did not evolve, not giving rise to true leaves, which should be pinnate.
According to the Center for Agroforestry Research of Rondônia – CPAFRO (2004), the flowers
are arranged in loose ears 10 cm long, single or united upper armpit. The flowers are
pentamerous, with a cup of 0.6-0.8 mm long, with short obtuse lobes, a corolla twice longer
than the calyx. The fruits are like pods, twisted or coiled, brown, short, dehiscent, with black
seeds, small and pending in the pod by a yellow filament, formed from September to
November. These are linear when green, with 3-5 mm width, attaining 7.8 cm in length.
The seeds are glossy and may have an ellipsoid or oval form (2.5 to 3.5 mm), within an orange
color, which may vary in intensity (Barbosa, 2002). It is native to the northern state of
Queensland, in Australia, Papua New Guinea and the Maluku and Irian Java islands, in
Indonesia (Tonny e Vieira, 2006). The distribution area latitudes are between 1 ° and 19 ° S, and
the main populations are distributed at altitudes
between sea level and 100 m, with an upper limit of
720 m known (Doran e Skelton, 1982).
The A. mangium can withstand minimum
temperatures average 12-25 º C and maximum
average 31-34 º C (Barbosa, 2002). The main
regions of distribution of this species are those with
humid tropical climate with a short dry period in the
winter and a high total annual precipitation. The
temperatures near the coastal region are high and
uniform throughout the year, hence the
inappropriateness of this species in these regions. In
figure 1 we can see the overall appearance of the
species.
Fig.1: General aspect of Acacia mangium.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
1.2. MAIN GOALS
The main goal of this forest inventory is to assess the current production of wood into two distinct
classes: the future trees and thinning trees. The first are those with physical conditions to reach a
final cut for having good and straight boles. Meanwhile, the latter are defective or present a
faulty growth and will not reach the final cut; they will very soon be subject to the process of
thinning. Therefore, this study includes data as the volume as a future timber trees per hectare,
the volume of timber thinning of trees, the percentage of trees and thinning per hectare and
estimates of the value of the diameter as a function of DBH. It will also be presented the
hypsometric curves and scaling equations of individual trees. The method used to select the
plots was randomized, and 23 plots were selected in the Vale do Buriti’s farm - FSPU09 and 40
plots in Santa Maria’s farm - FSPU02. The plots selected had a circular geometry and a total
area of 500 m2 each. Subsequent to field inventory, calculations were performed concerning
the volumes on the bark for all trees on the plot. For this analysis, equations have been
previously developed for this purpose, through a program called SYSTAT.
Information to be collected in sample plots:
Tilt (in degrees);
Dead trees: notes the absence or presence, then the registry by category
(Standing Dead: SD)
Trees future: Boles marked with B (good).
Thinning Trees: Reasonable or bad boles and not being a future tree.
GPS Coordinates of the center portion;
Azimuth: For each tree is important to know which is the angle relative to the north –
In degrees
Distance to the center: distance of each tree to the center of the plot in meters;
As the plots are permanent, the Hossfeld method application has already been started. Once
the trees dimensions make scaling practical, the Pressler Bitterlich methodology will be applied.
For each plot, the dominant trees were removed, in which case the plots of 500 m2 are five. As
can be seen in figure 2, GPS is placed in the tree that represents the center of the plot, suitably
marked in red and subsequently the coordinates will be withdrawn.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
2. FIELD MATERIAL
Tape-measure;
Vertex Hypsometer;
Relascope Bitterlich mirrors;
Caliper;
Compass;
Can of red paint;
Cards numbered to 100;
Pushpins;
GPS;
Leggings;
Waterproof;
Field sheets;
Pens;
Stepladder;
Insect Repellent;
Thermos water;
Fig.2: Attainment of the coordinates of the center of the plot.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
3. AREA CHARACTERIZATION
3.1 VALE DO BURITI FARM
The inventoried area is located in the “Assentamento do Poção”, in the municipality of
Catolândia (60 km from the city of Barreiras), in the state of Bahia. The farm is divided into plots,
(FSPUs - Forestry Standard Production Unit) with the legal field reserve burned during the dry
season. The plot leaning against the population area in question is clean and ready to be
planted; soon the danger of fire is reduced. Nevertheless, it is necessary to pay special
attention to the neighboring farms that have a lot of vegetation.
Fig.3: Location of the Vale do Buriti’s farm….
3.2 SANTA MARIA FARM
The inventoried area is also located in the “Assentamento do Poção”, in the municipality of
Catolândia (60 km from the city of Barreiras), in the state of Bahia.
Fig.4: Location of population area of Santa Maria’s Farm
Buriti Valley, Poção Source: Google Earth
Latitude 53°37'12.46"E
Longitude 86°45'395.66"S
Santa Maria, Poção Source: Google Earth
Latitude 53°61’71.94”E
Longitude 86°46’279.84”S
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
4. CLIMATE CHARACTERIZATION
4.1 TEMPERATURE
In the climate characterization of the area in study there were used weather data, including
temperature and precipitation, recorded by the weather station in Barreiras-Bahia. The Barreiras
County is inserted in a region where the climate sub-humid to dry prevails. The average annual
temperature is 24,3ºC, standing in the average temperature values for the State of Bahia.
Regarding the average temperatures of the last 20 years (1992-2012), this year was the year in
which this was closer to 2011, as the figure 6 shows.
Fig.6: Monthly average of the minimum and maximum daily temperatures recorded by the
weather station Barreiras-Bahia during the year of 2011 in the city of Barreiras (Allmetsat).
From the analysis of this graphic we obtained the monthly average temperatures of the three
hottest months (August, September and October) and the three cooler months (June, July and
August), being 25,9ºC and 22,2ºC respectively.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
4.2 PRECIPITATION
The average annual precipitation in the region is 900 mm to 1.500 mm, and in the municipal
headquarters of Barreiras (where we obtained these data) there is an annual average of 1.122
mm. Rains occur mainly from October to April and are associated with the continental nature
of the atmospheric currents coming from the west or southeast.
The months from May to September are nearly dry, characterizing two well defined seasons in
terms of rain in the region: the rainy season (94% of total precipitation for the year), which arises
from October to April and a dry season (6% of the total precipitation for the year), which covers
the months from May to September. The months of November, December and January are the
ones that register the highest values of precipitation and is very common the occurrence of
lightning.
Fig.7: Monthly rainfall average recorded at the weather station of Barreiras-Bahia during the
year of 2011. (Allmetsat)
Barreiras: precipitation (mm)
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
4.3 INSOLATION
In the graphic below we can see that the month with the lowest values of insolation is
November and the month with the highest insolation values is August. With greater amounts of
heat stroke in August on the order of 9 hours per day and less sunshine in November during six
hours per day. The period of intense sunlight lasts from May to September with values always
higher than 8 hours per day.
Fig.8: Monthly average of the number of hours of sunshine per day recorded by the
meteorological station of Barreiras - Bahia during the year of 2011 (Allmetsat).
Barreiras: insolation (hours)
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
5. EDAPHIC AND ECOLOGICAL CHARACTERIZATION
With the lithological chart of the area, we could verify that it was mainly composed of red
yellow latosols (lv). Moreover, the more humid areas (Buritis) contain hydromorphic soils. These
types of soil are characterized by a great capacity for water absorption, since they are highly
porous; making the rain waters disappears very quickly. The particle size is quite thin and there is
almost no presence of rocky material in outcrop.
Due to its composition, and although these soils being less fertile, they have a structure very
positive for any type of crop, they are of easy handling (very fine and dusty; Figure 9). These
soils are intrinsically linked to rainfall, because an intense development of the vegetation only
occurs in these conditions. Being a very thin soil, the preventive measures should be considered
for the soil not to degrade. During the summer, if soils are exposed to the wind, and in the rainy
season, the flood waters easily creep enough sediment to the lower areas.
Fig.9: Farms soil.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
6. METHODOLOGY
6.1. RANDOM SAMPLING
These values were collected in the area according to random sampling, not stratified. In this
way, it is intended to reduce systematic errors in the selection of the sample plots where we
found their location (figure 10 and 11).
Fig.1 0: Distribution of plots in settlement in Santa Maria’s farm (FSPU02).
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
Fig.11: Distribution of plots in settlement in the Vale do Buriti’s farm (FSPU09).
Whereas to evaluate the entire forest would have unbearable costs we established a suitable
number of plots to the study so that the accuracy was the best possible. Therefore, we selected
23 plots on the Vale do Buriti’s farm and 40 plots on the Santa Maria’s farm. The carried out
sampling proved to be sufficient to achieve the desired confidence level. In total 63 plots were
evaluated by widespread areas to inventory.
The formulas used to calculate the sample relatively to the forest which would be the target
inventory, was as follows:
Regarding the inference of the implicit error in the process of sampling rate, is described in the
following formulas:
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
7. FIELDWORK PROCEDURES
The first step performed in the field work was the identification of the plot to study, which must have a
future tree in the center. Once identified, we marked the center of the plot (future tree identified) with
red ink so that it is clearly visible in the future. After this step, we assessed the line of greatest slope. For this
procedure, it is necessary a clearance of 20 meters, where the slope is measured. To make an easier
data visualization, the person that held the clinometer and the compass, stood on higher ground where
the data slope and exposure were obtained.
All the plots studied presented a circular geometry, with an area of 500m2. The error indexed to this
measurement is negligible due to the slope of the land. To calculate the area of the plot we used the
corrected formula radius of the circle:
This process would require extra work, such as the calculator, which although not impossible, became
avoidable due to the use of a table of corrected radii. For this reason, we use a table of fixed radii, which
means that through the slope value, we could infer which the correct radius. After these steps we
proceeded to the numbering of the trees that were within the plot. For this purpose, we used a device
called Vertex. In addition to this equipment, we resorted to the use of a tape-measure to evaluate the
distance of each tree from the center of the plot. Subsequently, we recorded the azimuth values of each
tree. The measurement of the DBH and the base diameter of each tree were performed using a caliper
(figure 12) and we also registered the kind of tree (future tree or thinning tree) and the quality of the bole.
Fig.12: Fieldwork.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
Taking in consideration that in the future we might want to calculate the volume of a tree by diameter
classes (Hossfeld method), we selected those that were the closest to the central diameter of each class
by pointing them in the form field.
Through the help of Bitterlich relascope, readings were taken at 1,30 m diameter (DBH), half the value of
the same diameter (d/2) and the top reading (dt). These readings would serve to calculate the volume
of each class of trees. However, this has not happened because volume of the tree was estimated using
growth equations, since it is not possible to use Bitterlich relascope, due to the small size of the trees. It is
important to note that during the reading with the Bitterlich relascope, these were always made
perpendicular to the direction of measurement of the diameter of the tree.
The next step was to check the data table obtained, which the 5 dominant trees in each plot and, also 2
trees per diameter class for future trees and thinning trees. Using the Vertex we calculated the heights of
these trees previously marked (dominant trees and trees sample). For this procedure we ensured that the
operator would have full visibility either of the base or of the top of the tree, and the inclination was the
smallest possible. The aim would be to reduce the error associated with the measurement in the
population area.
In Santa Maria’s farm it was not possible to use the Bitterlich relascope. Alternatively, measurements of
various diameters were taken along the tree (base; 0,60cm; 1,30cm; 2,30cm; 3,30cm; 4,30cm). In the
forest area at Vale do Buriti’s farm we resorted to the use of Bitterlich relascope to collect some data in
order to establish the growth equations.
At the end of this procedure, were evaluated about 50 future trees and 50 thinning trees, in both forest
settlements, to achieve different growth equations.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
8. MEASUREMENT AND OBSERVATION ERRORS
8.1. HUMAN ERRORS
Throughout the forest inventory process various types of mistakes can be made. One of the
most common is the exchange of values during the annotation. To avoid this error, the
appraiser should say the value aloud and the note taker should repeat it to prove that he
heard the value correctly. The use of inappropriate formulary or the incorrect processing data is
another common mistake. To bridge this error we should be make prior preparation and consult
adequate bibliography. There are also several mistakes of human nature mainly due the
different sensitivities of human sense.
8.2. MEASUREMENT ERRORS
Errors due the shape of the object to be measured;
Inaccuracies of the instruments;
Physical, topographical and climatic influences.
The errors inherent in a work of this nature can be of two types: random errors and systematic errors. The
random errors have unpredictable nature and operate in both directions of measurement (bilateral errors
- positive or negative), and may be subject to correction and/or mitigation. So that, the systematic errors
(which cannot be corrected) can be minimized if we fit the equipment and the experimentation plans to
planned study. These errors show dependence of the magnitude and of the direction of the error
(unilateral errors - positive or negative).
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
9. DIAMETERS MEASUREMENT RULES
The rules for measuring diameters are a standard methodology for forest inventories. Due to its
central role in these studies, it is essential the correct execution of the technique or otherwise, it
can be introduced systematic errors in the study that cannot be corrected.
In figure 13, we can observe six different cases of diameters trunk measurements, which vary
according to the slope of the terrain and to the type of trunk.
Fig.13: Measurement rules of DBH.
In case 1, on sloping ground, the diameter should be measured from the higher side, about 1,30
m from the base. In case 2, it is possible to see the most common case of the measurement of
DBH, that is, a tree which stands on a flat land. In this case, the measurement should be made
parallel to the ground level and approximately 1,30m from the base. In case 3, the land is flat
but the tree is sloped.
In this case, the diameter should be measured at the bottom side of the slope. In case 4, there
is a situation which both the ground and the tree is sloped. Therefore, the measurement should
be made on the higher side of the inclination. In case of the trees with the branching along the
zone of 1,30m, each branch must be measured individually. In the case of branches which
divide below 1,30m (case 5), we must count each branch as an independent individual. If,
otherwise, the split occurs at a height of more than 1,30m then the measurement is done
considering only an individual.
Another situation that can affect the diameter measurement is the presence of nodes, gumming or
wounds in the area of 1,30, and as such, we must measure up to a higher level, by making a comment in
the form field explaining what happened during the procedure.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
9.1. DOMINANT TREES
Is called dominant trees those that present a canopy above average overall of the forest area.
In this study, we measured the height of 5 dominant trees per plot. To assist the measurements
we used the Hypsometer Vertex. The height, with Hypsometer Vertex, is determined by making
two types of readings: the first reading is made targeting the Transponder, placed in the tree at
1,30m, and a second target to the top of the tree. We should be within a sufficient distance
from the tree to be able to observe the canopy top of that same tree. Unlike other instruments,
the Vertex does not take in consideration the distance that we might be from the tree. To avoid
measuring errors, particularly errors over/under evaluation, which can be made with the target
Hypsometer Vertex, we must take extreme care.
9.2. MODEL TREE
Model trees are those that represent the average values of forest area regarding the DBH. When we
were calculating the volume of model trees to the Vale do Buriti farm we resorted to Bitterlich relascope.
In this process, few can frame one of the bands, by choosing the most appropriate for the situation (the
distance of the tree depends on this option).
Measurements were made to 1,30m height, preferably in the horizontal plane and perpendicular to the
measurement made with the caliper. Then, we did a reading for the director point, where the diameter is
half of the diameter to 1,30m. At this point, the reading should be made to half scale used to 1,30m,
having 2 narrow bands in the case of band 1 or 4 bands corresponding to the band 1, where the
measurement should be on the band 4.
And finally, we made a target for the arrow tree (figure 14).
Fig.14: Measurement with the Bitterlich Relascope.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
9.3. WOOD VOLUME CALCULATION
The calculation of the volume of wood was made by scaling equations developed by Samuel
Reis, with the help of Professor Domingos Lopes. This consists in picking a considerable number
of trees in the population area (in this study were 50 for future and 50 for thinning ) in which the
dendrometric data are removed - in the case of the Vale do Buriti’s farm we used Bitterlich
Relascope and in Santa Maria’s farm measurement of the diameters was made along the bole.
In this study we used two different methods of evaluation, but with the same results. After
collecting all the data for future trees and thinning trees, we introduced the values separately
into the program SYSTAT. The scaling equations were correctly for each kind of tree: two for
future trees, two for thinning trees and two in which we put together the data of future trees
and thinning trees. These equations were applied equally to data from the two villages.
With these equations, the volume was calculated for all trees in the plot using the sharpest
equation, that is, the one which presents a value of R2 as close to 1. After obtaining the
individual volume for each tree, the volume was calculated for the plot by summing up all
independent volumes from each tree. At the end, we obtained a matrix with the result of all
plots, ready to be statistically evaluated.
With this process, it is possible to know the volume of each existing tree in the population area.
To this end, we simply have to know the value of the DBH or the height.
Note that these equations ensure a minimal error for trees in forest areas previously studied.
.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
10. STATISTICAL ANALYSIS
To determine the volume of the population area we worked up the average calculations (ẋ),
the variance (s2), the standard deviation (s), the average variance (s2/x), the standard error (Sx)
and the interval of confidence (IC). Thus, for the values of total volume obtained by scaling
equations, relating the volume over bark, we made the following calculations:
10.1. AVERAGE
The sample average is a measure of central tendency, which is represented by ẋ and makes a location in
the center of the sample. It is obtained from the following expression:
x – Volume average
xi – Individual volume in each plot
n – Number of plots sampled
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
10.2. VARIANCE
In statistical terms, the variance is the measure more commonly used to quantify the variability
of a population. This measure of variation is obtained by averaging the sum of squares of the
deviations of individual values from the average population:
s2- Variance
- Sum of individual values of volume squared, per plot
2 - Sum of the volumes values volumes per plot squared
n – Number of plots sampled
10.3. STANDARD DEVIATION
In order to evaluate the variability of a population in terms of the original units, we must use the
square root of the variance, the standard deviation:
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10.4. VARIANCE OF AVERAGE
It is a measure of accuracy of the estimated average and it is calculated with the following
formula:
s2/x – variance of average
s2- variance
n- number of plots sampled
N - total number of plots
10.5. STANDARD ERROR
The standard error measures the dispersion of a population averages from the average of the
averages in the original units:
Sx –standard error
s- standard deviation
n- number of plots sampled
N- total number of plots
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10.6. SAMPLING ERROR
Defines the difference between the estimated average and actual average, and is, therefore, a
measure of exactness. The value of t depends on the level of probability chosen * and on the greatness
of sampling (n). As n approaches infinity the distribution of t tends to a normal distribution.
SE- sampling error;
Sx – standard error;
t - “t” of Student
10.7. INTERVAL OF CONFIDENCE
For probability level of 95%* and n-1 freedom degrees, we will find a value of t, which later will be used to
estimate the interval of confidence:
IC – interval of confidence
ẋ – average
Sx – standard error;
t - “t” of Student
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11. RESULTS
11.1. HYPSOMETRIC CURVES (H - HEIGHT IN METERS; D - DIAMETER IN CM)
11.1.1. SANTA MARIA’S FARM
The model h= a.db was adjusted for the database of Santa Maria’s farm, considering the
different types of trees:
- For future trees: h = 2.786.d0.419 R2 = 0.632
- For thinning trees: h = 3.515.d0.290 R2 = 0.598
- For data of thinning trees h = 2.988.d0.380 R2 = 0.616
+ future trees
Comparing the 3 adjusted equations we obtained the following figure, where we can notice
differences in the profile of the trees:
Graphic 1: Comparison between the three hypsometric curves for Santa Maria’s farm.
When comparing the three equations (Graphic 1) it is perceptible that the future trees present
lower volume values from the remaining, in smaller DBHs, but as they grow up they can
overcome the remaining. Thus, its perspective is that in the future these trees will present better
performances.
Diameter (cm)
Future
Thinning
Total
Hei
ght
(m)
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11.1.2. VALE DO BURITI’S FARM
The model h=a.db was adjusted to the database of the Buriti’s Valley, considering the various
types of trees:
- For future trees: h = 2.639.d0.547 R2 = 0.462
- For thinning trees: h = 2.170.d0.647 R2 = 0.462
- For data of thinning trees h = 2.277.d0.619 R2 = 0.455
+ future trees
Comparing the 3 adjusted equations we obtained the following figure, where we can notice
differences in the profile of the trees:
Graphic 2: Comparison between the three hypsometric curves for Vale do Buriti’s farm.
When comparing the 3 equations (Graphic 2) it is perceptive that thinning trees, present lower
volume values apart from the remaining, higher in DBHs. So, initially, its perspective is that in the
future these trees will have improved performances; and the futures trees will have worst
performances.
Diameter (cm)
Future
Thinning Total
Hei
ght
(m)
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11.2. CUBING EQUATIONS:
Then, we present the equations of adjusted cubing. They may be an important tool to the
managers of this area, since it facilitates the volume estimation of individual trees, requiring
inputs easily obtainable.
11.2.1. SANTA MARIA’S FARM
The model v=a.db was adjusted for the database of Santa Maria, considering the various types
of trees:
- For the future trees: v = 0.00034.d 1.896 R2 = 0.861
- For thinning trees: v = 0.0011.d 1.258 R2 = 0.487
- For data of thinning trees Ln (v) = -7.569+1.660 Ln (d) R2 = 0.846
+ future TREES:
Equations comparison graphic
Graphic 3: Comparison between the 3 equations for the cubage for Santa Maria’s farm.
From the comparison of the 3 equations, in this case, the behavior is opposite to what was
previously thought. Initially, the future trees, to the same dimensions of DBH, had higher values
of volume, but in higher dimensions begin to have a lower behavior. This doesn’t mean that in
relation, for example, to the quality of the bole, the differences are not well marked and that
the appreciation of future trees will, nevertheless, be more pronounced.
Diameter (cm)
Volume (m3)
Future
Thinning
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11.2.2. VALE DO BURITI’S FARM
The model v=a.db was adjusted to the database of the Vale do Buriti’s farm, considering the
various types of trees:
- For future trees: v=0.00014.d2.530 R2= 0.949
- For thinning trees: v=0.000099.d2.706 R2= 0.883
- For data thinning trees
+ future trees model Log(v)= a+b.Log(d) was adjusted :
Ln(v) = -9.034+ 2.616Ln(d) R2= 0.950
Equations comparison graphic
Graphic 4: Comparison between the three cubage equations for Buriti’s valley farm.
Again, from the analysis of graphic 4, we can confirm that for the future we must select trees for
further criteria other than just the size. It is clear that, in our perspective, the use of adjusted
equations for the entire data can be a more balanced approach, and that can reflect the
average situation of the populations under study.
Diameter (cm)
Future
Thinning
Total Vo
lum
e (m
3)
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11.3. SANTA MARIA’S FARM
Where 40 sample plots of 500 m2 were made, we obtain the following results:
In table 1, the volume of trees considered future;
Table 1: Volume of the future trees on Santa Maria’s farm:
Volume of future trees
x (average) 0,92 m3 /ha
Variance 0,20
(m3
ha-1)2
Standard deviation 0,45 m3 /ha
Average variance 0,01
(m3
ha-1)2
Standard error 0,07 m3 /ha
SE (Sampling error) 0,14 m3 /ha
SE% 0,15 %
IC (Interval of confidence) ]0,78;1,06[ m3 /ha
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In table 2, the volume of trees considered thinning;
Table 2: Volume of thinning trees on Santa Maria’s farm:
Volume of thinning trees
x (average) 5,58 m3 /ha
Varience 3,93
(m3 ha-
1)2
Standard deviation 1,98 m3 /ha
Average variance 0,10
(m3 ha-
1)2
Standard error 0,31 m3 /ha
SE(Sampling error) 0,63 m3 /ha
SE% 0,11 %
IC (Interval of confidence) ]4,95;6,21[ m3 /ha
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In table 3: total volume (thinning + future) of regarded trees;
Table 3: Total volume of the trees of Santa Maria’s farm:
Total volume of trees
x (average) 6,50 m3
/ha
Varience 4,17
(m3
ha-1)2
Standard deviation 2,04
m3
/ha
Average variance 0,10
(m3
ha-1)2
Standard error 0,32
m3
/ha
SE(Sampling error) 0,65 m3
/ha
SE% 0,10 %
IC (Interval of
confidence) ]5,85;7,15[ m3
/ha
Fig.15: Santa Maria’s farm forest area.
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Vale do Buriti’s Farm
Where 23 sample plots of 500 m2 were made, we obtain the following results:
In Table 4, the volume of the trees considered future;
Table 4: Volume of the future trees on the Vale do Buriti’s farm
Volume of future trees
x (average) 6,06 m3 /ha
Variance 6,80
(m3 ha-
1)2
Standard deviation 2,61 m3 /ha
Average variance 0,30
(m3 ha-
1)2
Standard error 0,54 m3 /ha
SE (Sampling error) 1,12 m3 /ha
SE% 0,18 %
IC (Interval of confidence) ]4,94;7,18[ m3 /ha
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In table 5, the volume of the trees considered thinning;
Table 5: Volume of the thinning trees on the Vale do Buriti’s farm
Volume of thinning trees
x (average) 28,05 m3 /ha
Variance 42,73
(m3 ha-
1)2
Standard deviation 6,54 m3 /ha
Average variance 1,86
(m3 ha-
1)2
Standar error 1,36 m3 /ha
SE (Sampling error) 2,82 m3 /ha
SE% 0,01 %
IC (Interval of confidence) ]25,23;30,87[ m3 /ha
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In table 6, the total volume (thinning + future) of regarded trees;
Table 6: Total Volume of the trees of the Vale do Buriti’s farm.
Total volume of the trees
x (average) 34,11 m3 /ha
Variance 31,50
(m3 ha-
1)2
Standard deviation 5,61 m3 /ha
Average variance 1,37
(m3 ha-
1)2
Standard error 1,17 m3 /ha
SE (Sampling error) 2,43 m3 /ha
SE% 0,07 %
IC (Interval of confidence) ]31,68;36,54[ m3 /ha
Fig.16: Vale do Buriti’s farm forest area.
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12. CONCLUSIONS
The conclusions that can be drawn from this work, actually more than conclusions, and the
comments to make are subdivided into the places where this work took place. It is thought that,
thus, it is more efficient in the definition of future lines of action in each one of them.
12.1. SANTA MARIA’S FARM
Regarding the results presented above, we highlight the low sampling error which gives them
credibility.
Sampling error of the future tree volume is relatively higher because of the bigger dispersion of
sampling, namely, the fact of having few futures trees per hectare directly influences this result.
As would be expected, the results in this forest area have a higher associated error due to a
lower sampling rate in the field, which causes a difference between the sampled area and the
total forest area, very high. However, the results are very good, giving us a sampling error
around 0.1%, which cannot be considered very high compared with other studies surveyed.
The firebreaks on all perimeters of the forest areas should be as wide as possible and should be
kept clean whenever possible. It is essential that at the time of the dry season this should always
be without vegetation.
With regard to the high quality boles intended for these forest settlements, pruning should be
done up to 4-5 meters height. Thus, these same pruning must take into account the cut
branches so that they do not exceed 2cm in diameter. In the general forest area, we should
regard the constant competition between the trees, so that they grow as much as possible,
along with gains in its diameter, with particular attention to the thinning performed.
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12.2. VALE DO BURITI’S FARM
Regarding the results of the Vale do Buriti’s farm, presented earlier. Again the sampling error of
the future tree volume is relatively high, due to the same reasons given above. As would be
expected, the results in this population area have a lower associated error due to a higher
sampling rate field, which causes a difference between the sampled area and the total forest
area, smaller. Nevertheless, the results are very good and give us sampling errors around 0.07%,
which is very low.
Thus, for the Vale do Buriti’s farm we achieved an average volume of 34,1m3/ha in all the trees.
Considering their age and reasonable handling in the first months of life it is a very satisfactory
value, being possible to achieve, without a doubt, a higher value.
We must bear in mind that the years of the largest increases in volume are still to come, and
may be possible to achieve the annual average volume initially expected.
In the case of this forest area we have a value of future trees per hectare quite reasonable
making the choice of trees that will make to harvest easier, as we have a larger number of trees
to choose from. This number of future trees, along with a proper fertilization and forestry
management, can be translated into a very productive and homogeneous forest area.
In this population area there are some risk factors identical to those of Santa Maria’s farm.
As for the boles intended for these forest areas, we can evaluate that they are of great quality,
and there are one or another individual tree with this desirable quality. Even so, the bole up to
4-5 meters high must be kept free of branching. So, pruning must take into account the cut
branches, so that they do not exceed two cm in diameter. In the general population area we
should take in consideration the constant competition between the trees so that they grow
together with the greatest possible gains in diameter, and thus special attention to the thinning
that might be made.
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
13. BIBLIOGRAPHIC REFERENCES
- MARQUES, C.P., FONSECA, T., 2006, “Apontamentos de Inventário florestal”, UTAD, Vila Real.
-MARQUES, C.P., LOPES, D., FONSECA, T., 2007, “Apontamentos de Dendrometria”, UTAD, Vila
Real.
-ALLMETSAT, 13-12-2012, http://pt.allmetsat.com/clima/brasil.php?code=83236.
-INMET, 13-12-2012, http://www.inmet.gov.br/portal/.
-EMBASA, 13-12-2012, www.embasa.ba.gov.br.
-IPEF, 15-01-2013, http://www.ipef.br/identificacao/acacia.mangium.asp
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
ANNEXES
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
Plots Map – Santa Maria
Greenwood Agropecuaria Ltda. Barreiras, Bahia Brazil. CPNJ 10.906.327/0001-66
Plots Maps – Vale do Buriti
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Precipitation Graphic from City of Barreiras